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Main Authors: Rueda, Alice, Perivolaris, Argyrios, Roy, Niloy, Weston, Dylan, Shaya, Sarmed, Cote, Zachary, Ivanov, Martin, Teferra, Bazen G., Wu, Yuqi, Rambhatla, Sirisha, Sharma, Divya, Greenshaw, Andrew, Jetly, Rakesh, Zhang, Yanbo, Cao, Bo, Samavi, Reza, Krishnan, Sridhar, Bhat, Venkat
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.06151
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author Rueda, Alice
Perivolaris, Argyrios
Roy, Niloy
Weston, Dylan
Shaya, Sarmed
Cote, Zachary
Ivanov, Martin
Teferra, Bazen G.
Wu, Yuqi
Rambhatla, Sirisha
Sharma, Divya
Greenshaw, Andrew
Jetly, Rakesh
Zhang, Yanbo
Cao, Bo
Samavi, Reza
Krishnan, Sridhar
Bhat, Venkat
author_facet Rueda, Alice
Perivolaris, Argyrios
Roy, Niloy
Weston, Dylan
Shaya, Sarmed
Cote, Zachary
Ivanov, Martin
Teferra, Bazen G.
Wu, Yuqi
Rambhatla, Sirisha
Sharma, Divya
Greenshaw, Andrew
Jetly, Rakesh
Zhang, Yanbo
Cao, Bo
Samavi, Reza
Krishnan, Sridhar
Bhat, Venkat
contents Engagement between client and therapist is a critical determinant of therapeutic success. We propose a multi-dimensional natural language processing (NLP) framework that objectively classifies engagement quality in counseling sessions based on textual transcripts. Using 253 motivational interviewing transcripts (150 high-quality, 103 low-quality), we extracted 42 features across four domains: conversational dynamics, semantic similarity as topic alignment, sentiment classification, and question detection. Classifiers, including Random Forest (RF), Cat-Boost, and Support Vector Machines (SVM), were hyperparameter tuned and trained using a stratified 5-fold cross-validation and evaluated on a holdout test set. On balanced (non-augmented) data, RF achieved the highest classification accuracy (76.7%), and SVM achieved the highest AUC (85.4%). After SMOTE-Tomek augmentation, performance improved significantly: RF achieved up to 88.9% accuracy, 90.0% F1-score, and 94.6% AUC, while SVM reached 81.1% accuracy, 83.1% F1-score, and 93.6% AUC. The augmented data results reflect the potential of the framework in future larger-scale applications. Feature contribution revealed conversational dynamics and semantic similarity between clients and therapists were among the top contributors, led by words uttered by the client (mean and standard deviation). The framework was robust across the original and augmented datasets and demonstrated consistent improvements in F1 scores and recall. While currently text-based, the framework supports future multimodal extensions (e.g., vocal tone, facial affect) for more holistic assessments. This work introduces a scalable, data-driven method for evaluating engagement quality of the therapy session, offering clinicians real-time feedback to enhance the quality of both virtual and in-person therapeutic interactions.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06151
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Estimating Quality in Therapeutic Conversations: A Multi-Dimensional Natural Language Processing Framework
Rueda, Alice
Perivolaris, Argyrios
Roy, Niloy
Weston, Dylan
Shaya, Sarmed
Cote, Zachary
Ivanov, Martin
Teferra, Bazen G.
Wu, Yuqi
Rambhatla, Sirisha
Sharma, Divya
Greenshaw, Andrew
Jetly, Rakesh
Zhang, Yanbo
Cao, Bo
Samavi, Reza
Krishnan, Sridhar
Bhat, Venkat
Computation and Language
Engagement between client and therapist is a critical determinant of therapeutic success. We propose a multi-dimensional natural language processing (NLP) framework that objectively classifies engagement quality in counseling sessions based on textual transcripts. Using 253 motivational interviewing transcripts (150 high-quality, 103 low-quality), we extracted 42 features across four domains: conversational dynamics, semantic similarity as topic alignment, sentiment classification, and question detection. Classifiers, including Random Forest (RF), Cat-Boost, and Support Vector Machines (SVM), were hyperparameter tuned and trained using a stratified 5-fold cross-validation and evaluated on a holdout test set. On balanced (non-augmented) data, RF achieved the highest classification accuracy (76.7%), and SVM achieved the highest AUC (85.4%). After SMOTE-Tomek augmentation, performance improved significantly: RF achieved up to 88.9% accuracy, 90.0% F1-score, and 94.6% AUC, while SVM reached 81.1% accuracy, 83.1% F1-score, and 93.6% AUC. The augmented data results reflect the potential of the framework in future larger-scale applications. Feature contribution revealed conversational dynamics and semantic similarity between clients and therapists were among the top contributors, led by words uttered by the client (mean and standard deviation). The framework was robust across the original and augmented datasets and demonstrated consistent improvements in F1 scores and recall. While currently text-based, the framework supports future multimodal extensions (e.g., vocal tone, facial affect) for more holistic assessments. This work introduces a scalable, data-driven method for evaluating engagement quality of the therapy session, offering clinicians real-time feedback to enhance the quality of both virtual and in-person therapeutic interactions.
title Estimating Quality in Therapeutic Conversations: A Multi-Dimensional Natural Language Processing Framework
topic Computation and Language
url https://arxiv.org/abs/2505.06151